AI in Customer Experience
- Overview
An AI customer experience is the practice of using AI technology - such as machine learning (ML), chatbots and digital agents - to deliver fast, efficient, personalised and proactive experiences at length.
Essentially, an AI in CX leverages intelligent technology to improve customer experiences, enable CX teams to work more productively and help the business save costs.
AI can help businesses in many ways, including:
- Personalization: AI can analyze customer data to understand their needs and tailor interactions accordingly. For example, AI can provide different search experiences or product attributes based on a customer's role or digital body language.
- Efficiency: AI can streamline the CX orchestration process, which can lead to cost-effective content creation, rapid asset production, and reduced human error.
- Post-transaction engagement: AI can help ensure customers feel valued after making a purchase. For example, AI can send automated surveys and feedback mechanisms to gather insights and identify areas for improvement. AI can also suggest complementary products or services based on a customer's recent purchases.
- Cost reduction: AI can help reduce marketing, sales, and customer service costs.
Many businesses are still learning how to use advanced AI to improve the customer experience (CX). AI technologies used in CX include machine learning (ML), chatbots, digital agents, and advanced analytics.
- Customer Experience
Customer experience (CX) encapsulates everything a business or organization does to put customers first, manage their journey, and meet their needs.
CX is the sum of all interactions a customer has with a company throughout the buying process. It’s not just about actions, it’s also about how customers feel about the brand.
CX is important because it is a leading competitive advantage. As products become more similar, customers are more likely to differentiate based on their experience with the company. Customers want to feel connected to their favorite brands, and they want these brands know and respect them.
CX includes:
- Contact before you buy: Marketing and Awareness
- Research and buy: in-store or online
- Post-purchase interactions: service, repairs, additions, etc.
CX differs from market research in that CX involves ongoing feedback from all customers, whereas market research is time-limited and focused on specific strategic issues.
- Application Performance Monitoring (APM) and Solutions
Application Performance Monitoring (APM) is a process that helps organizations identify and fix performance issues in their applications and code. APM solutions collect, monitor, and analyze data to provide visibility into applications and services. They can also help identify trends and outliers in key performance indicators.
APM is the process of using software tools and telemetry data to monitor the performance of business-critical applications. Businesses want to ensure that expected service levels are maintained and that customers have a positive application experience. They use APM tools to provide real-time data and insights into application performance. IT teams, DevOps, and site reliability engineers can then quickly identify and troubleshoot application issues.
- The Role of AI in APM
In today's digital age, applications are at the core of business operations. Whether it's a customer-facing e-commerce platform or an internal CRM system, the performance of these applications can make or break an organization.
To ensure that applications run smoothly and efficiently, APM becomes indispensable. Additionally, the integration of AI with APM is revolutionizing the way enterprises manage application performance.
AI can play a significant role in aiding APM. With AI-based APM tools, issues can be analyzed and quickly fixed at scale. Additionally, AI-based APMs continuously learn from historical data and can predict problems and suggest solutions even before they arise.
[More to come ...]